Search Results for author: Syrielle Montariol

Found 28 papers, 7 papers with code

Tâches Auxiliaires Multilingues pour le Transfert de Modèles de Détection de Discours Haineux (Multilingual Auxiliary Tasks for Zero-Shot Cross-Lingual Transfer of Hate Speech Detection)

no code implementations JEP/TALN/RECITAL 2022 Arij Riabi, Syrielle Montariol, Djamé Seddah

La tâche de détection de contenus haineux est ardue, car elle nécessite des connaissances culturelles et contextuelles approfondies ; les connaissances nécessaires varient, entre autres, selon la langue du locateur ou la cible du contenu.

Hate Speech Detection Zero-Shot Cross-Lingual Transfer

Course Recommender Systems Need to Consider the Job Market

no code implementations16 Apr 2024 Jibril Frej, Anna Dai, Syrielle Montariol, Antoine Bosselut, Tanja Käser

In light of the job market's rapid changes and the current state of research in course recommender systems, we outline essential properties for course recommender systems to address these demands effectively, including explainable, sequential, unsupervised, and aligned with the job market and user's goals.

Recommendation Systems Reinforcement Learning (RL)

Multi-Task Learning for Features Extraction in Financial Annual Reports

2 code implementations8 Apr 2024 Syrielle Montariol, Matej Martinc, Andraž Pelicon, Senja Pollak, Boshko Koloski, Igor Lončarski, Aljoša Valentinčič

For assessing various performance indicators of companies, the focus is shifting from strictly financial (quantitative) publicly disclosed information to qualitative (textual) information.

Multi-Task Learning Sentence +2

ConGeo: Robust Cross-view Geo-localization across Ground View Variations

no code implementations20 Mar 2024 Li Mi, Chang Xu, Javiera Castillo-Navarro, Syrielle Montariol, Wen Yang, Antoine Bosselut, Devis Tuia

Cross-view geo-localization aims at localizing a ground-level query image by matching it to its corresponding geo-referenced aerial view.

"Flex Tape Can't Fix That": Bias and Misinformation in Edited Language Models

no code implementations29 Feb 2024 Karina Halevy, Anna Sotnikova, Badr AlKhamissi, Syrielle Montariol, Antoine Bosselut

We introduce a novel benchmark dataset, Seesaw-CF, for measuring bias-related harms of model editing and conduct the first in-depth investigation of how different weight-editing methods impact model bias.

Misinformation Model Editing

ConVQG: Contrastive Visual Question Generation with Multimodal Guidance

no code implementations20 Feb 2024 Li Mi, Syrielle Montariol, Javiera Castillo-Navarro, Xianjie Dai, Antoine Bosselut, Devis Tuia

However, generating focused questions using textual constraints while enforcing a high relevance to the image content remains a challenge, as VQG systems often ignore one or both forms of grounding.

Question Generation Question-Generation

Rethinking Skill Extraction in the Job Market Domain using Large Language Models

no code implementations6 Feb 2024 Khanh Cao Nguyen, Mike Zhang, Syrielle Montariol, Antoine Bosselut

Skill Extraction involves identifying skills and qualifications mentioned in documents such as job postings and resumes.

Few-Shot Learning In-Context Learning

JOBSKAPE: A Framework for Generating Synthetic Job Postings to Enhance Skill Matching

1 code implementation5 Feb 2024 Antoine Magron, Anna Dai, Mike Zhang, Syrielle Montariol, Antoine Bosselut

Recent approaches in skill matching, employing synthetic training data for classification or similarity model training, have shown promising results, reducing the need for time-consuming and expensive annotations.

Benchmarking Sentence

Instruction-tuning Aligns LLMs to the Human Brain

no code implementations1 Dec 2023 Khai Loong Aw, Syrielle Montariol, Badr AlKhamissi, Martin Schrimpf, Antoine Bosselut

To identify the factors underlying LLM-brain alignment, we compute correlations between the brain alignment of LLMs and various model properties, such as model size, various problem-solving abilities, and performance on tasks requiring world knowledge spanning various domains.

Natural Language Queries World Knowledge

CRAB: Assessing the Strength of Causal Relationships Between Real-world Events

1 code implementation7 Nov 2023 Angelika Romanou, Syrielle Montariol, Debjit Paul, Leo Laugier, Karl Aberer, Antoine Bosselut

In this work, we present CRAB, a new Causal Reasoning Assessment Benchmark designed to evaluate causal understanding of events in real-world narratives.

CRoW: Benchmarking Commonsense Reasoning in Real-World Tasks

1 code implementation23 Oct 2023 Mete Ismayilzada, Debjit Paul, Syrielle Montariol, Mor Geva, Antoine Bosselut

Recent efforts in natural language processing (NLP) commonsense reasoning research have yielded a considerable number of new datasets and benchmarks.

Benchmarking

Multilingual Auxiliary Tasks Training: Bridging the Gap between Languages for Zero-Shot Transfer of Hate Speech Detection Models

no code implementations24 Oct 2022 Syrielle Montariol, Arij Riabi, Djamé Seddah

Zero-shot cross-lingual transfer learning has been shown to be highly challenging for tasks involving a lot of linguistic specificities or when a cultural gap is present between languages, such as in hate speech detection.

Hate Speech Detection named-entity-recognition +5

Measure and Evaluation of Semantic Divergence across Two Languages

no code implementations ACL 2021 Syrielle Montariol, Alexandre Allauzen

We propose a set of scenarios to characterize semantic divergence across two languages, along with a setup to differentiate them in a bilingual corpus.

Translation Vocal Bursts Valence Prediction +1

Scalable and Interpretable Semantic Change Detection

1 code implementation NAACL 2021 Syrielle Montariol, Matej Martinc, Lidia Pivovarova

We propose a novel scalable method for word usage-change detection that offers large gains in processing time and significant memory savings while offering the same interpretability and better performance than unscalable methods.

Change Detection

\'Etude des variations s\'emantiques \`a travers plusieurs dimensions (Studying semantic variations through several dimensions )

no code implementations JEPTALNRECITAL 2020 Syrielle Montariol, Alex Allauzen, re

Nous exp{\'e}rimentons sur un corpus de rapports financiers d{'}entreprises fran{\c{c}}aises, pour appr{\'e}hender les enjeux et pr{\'e}occupations propres {\`a} certaines p{\'e}riodes, acteurs et secteurs d{'}activit{\'e}s.

Capturing Evolution in Word Usage: Just Add More Clusters?

no code implementations18 Jan 2020 Matej Martinc, Syrielle Montariol, Elaine Zosa, Lidia Pivovarova

The way the words are used evolves through time, mirroring cultural or technological evolution of society.

Change Detection

Exploring sentence informativeness

no code implementations JEPTALNRECITAL 2019 Syrielle Montariol, Aina Garí Soler, Alexandre Allauzen

This study is a preliminary exploration of the concept of informativeness -how much information a sentence gives about a word it contains- and its potential benefits to building quality word representations from scarce data.

Informativeness Sentence +1

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